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The Ethereal
An Efficient Parallel Algorithm for Spectral Sparsification of Laplacian and SDDM Matrix Polynomials
July 27, 2015 ยท The Ethereal ยท + Add venue
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Authors
Gorav Jindal, Pavel Kolev
arXiv ID
1507.07497
Category
cs.DM: Discrete Mathematics
Cross-listed
cs.DS
Citations
6
Last Checked
2 months ago
Abstract
For "large" class $\mathcal{C}$ of continuous probability density functions (p.d.f.), we demonstrate that for every $w\in\mathcal{C}$ there is mixture of discrete Binomial distributions (MDBD) with $T\geq N\sqrt{ฯ_{w}/ฮด}$ distinct Binomial distributions $B(\cdot,N)$ that $ฮด$-approximates a discretized p.d.f. $\widehat{w}(i/N)\triangleq w(i/N)/[\sum_{\ell=0}^{N}w(\ell/N)]$ for all $i\in[3:N-3]$, where $ฯ_{w}\geq\max_{x\in[0,1]}|w(x)|$. Also, we give two efficient parallel algorithms to find such MDBD. Moreover, we propose a sequential algorithm that on input MDBD with $N=2^k$ for $k\in\mathbb{N}_{+}$ that induces a discretized p.d.f. $ฮฒ$, $B=D-M$ that is either Laplacian or SDDM matrix and parameter $ฮต\in(0,1)$, outputs in $\widehat{O}(ฮต^{-2}m + ฮต^{-4}nT)$ time a spectral sparsifier $D-\widehat{M}_{N} \approx_ฮต D-D\sum_{i=0}^{N}ฮฒ_{i}(D^{-1} M)^i$ of a matrix-polynomial, where $\widehat{O}(\cdot)$ notation hides $\mathrm{poly}(\log n,\log N)$ factors. This improves the Cheng et al.'s [CCLPT15] algorithm whose run time is $\widehat{O}(ฮต^{-2} m N^2 + NT)$. Furthermore, our algorithm is parallelizable and runs in work $\widehat{O}(ฮต^{-2}m + ฮต^{-4}nT)$ and depth $O(\log N\cdot\mathrm{poly}(\log n)+\log T)$. Our main algorithmic contribution is to propose the first efficient parallel algorithm that on input continuous p.d.f. $w\in\mathcal{C}$, matrix $B=D-M$ as above, outputs a spectral sparsifier of matrix-polynomial whose coefficients approximate component-wise the discretized p.d.f. $\widehat{w}$. Our results yield the first efficient and parallel algorithm that runs in nearly linear work and poly-logarithmic depth and analyzes the long term behaviour of Markov chains in non-trivial settings. In addition, we strengthen the Spielman and Peng's [PS14] parallel SDD solver.
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